Tuesday, June 30, 2026

GEO is Different from SEO

Generative Engine Optimization (GEO) arguably is quite different from search engine optimization (SEO).  


Beyond the obvious differences that SEO aims to rank in search results, while GEO aims to be cited or surfaced inside AI-generated answers, it is harder to optimize across the most-used generative artificial intelligence models (ChatGPT, Perplexity, Google AI Overviews and Claude)


The reason is that each of those models uses a different philosophy, some note. Optimizing for one platform can mean losing the other three, on the exact same piece of content. 


Some note that the engines differ in how much they rely on live retrieval versus internal model behavior, and in how explicitly they surface sources. 


Perplexity is the most retrieval-forward and citation-first; ChatGPT, Gemini, and Claude are more general-purpose LLMs that may use different mixes of training data, tool retrieval, and internal reasoning before producing an answer, according to Fiveblocks.  


Dimension

SEO

GEO

Primary goal

Rank higher in traditional search results and earn clicks. stridec+1

Get cited, referenced, or summarized in AI-generated answers. 

Where visibility appears

Search engine results pages. writesonic

AI overviews, chat responses, and generative summaries.

Main success metrics

Rankings, organic traffic, click-through rate, conversions.

Citation frequency, brand mentions, citation context, AI-attributed referrals. stridec

Content style

Can succeed with broader page-level optimization and strong topical coverage.

Benefits from answer-shaped passages that are easy for AI to extract and synthesize. stridec

Technical signals

Crawlability, speed, mobile-friendliness, indexing, schema. envisionitagency

Same basics, but schema, entity clarity, and machine-readable structure matter even more. 

Authority signals

Backlinks, relevance, trust, topical authority. 

Expert authorship, corroboration, entity signals, and source authority that AI systems can cite. stridec

User experience

User searches, scans results, clicks a site. writesonic

User gets an answer directly inside the AI interface, often without clicking. writesonic

“Data freshness”

Generally slower-moving rankings. stridec

More volatile because AI citation behavior can shift as retrieval systems change. stridec


Writesonic illustrates the differences as well. GEO is not about click-through rates. Instead, what matters are reference rates: how often a brand or content is cited or used as a source in model-generated answers.


Element

SEO

GEO

Primary goal

Rank higher in traditional search results (Google, Bing)

Get cited or referenced inside AI-generated answers (ChatGPT, Gemini, Perplexity)

Where visibility happens

Search engine results pages (SERPs)

AI summaries, conversational answers, and generative responses

Core success metric

Rankings, clicks, organic traffic, conversions

AI citations, brand mentions, presence in AI conversations

Main discovery model

Users click links from ranked results

Users consume synthesized answers without clicking

How authority is evaluated

Backlinks, domain authority, engagement metrics

Entity recognition, consistency, clarity, and cross-source mentions

Role of backlinks

Critical ranking signal

Helpful but not required; unlinked mentions still matter

Importance of entities

Indirect (via links and topical relevance)

Central; AI engines rely heavily on explicit entity identification

Content optimization focus

Keywords, search intent, technical SEO

Explicit facts, clear attribution, entity-rich writing

Keyword strategy

Target keywords with measurable search volume

Optimize for conversational prompts and intent clusters

Content structure

Improves crawlability and rankings

Essential for AI parsing and accurate citation

Off-site signals

Mostly backlinks and referring domains

Mentions across forums, reviews, UGC, news, and third-party sites

Control over sources

Primarily owned assets (your website)

Owned + unowned sources across the entire web

User journey impact

Often mid-to-bottom funnel (click → convert)

Top-of-funnel discovery and brand trust building

ROI timeline

Direct and measurable

Long-term, compounding brand visibility

Risk of misrepresentation

Lower (users see your page directly)

Higher; AI may summarize or misinterpret third-party content

Relationship to each other

Foundation for visibility

Extension of SEO for AI-driven discovery

source: Writesonic 


The practical implications are that each of the engines will provide different sorts of answers, with differing degrees of explicit documentation on sources used. Claude, for example, seems more cautious and less explicit about use of sources. 


I find Gemini and Perplexity much more helpful in terms of documenting sources used to provide an answer. 


Engine

Source transparency

Citation behavior

What you usually see

ChatGPT

Moderate to variable, depending on whether web browsing or connected tools are enabled. 

Citations may appear with browsing, but are often absent in standard responses.

A synthesized answer that may not show exactly which source influenced each claim. 

Gemini

Moderate, with stronger grounding in Google’s information ecosystem than explicit source display. fiveblocks

Citations can appear in some modes, but the answer often reads as integrated synthesis rather than source-by-source exposition. fiveblocks

A polished response with implicit grounding in indexed or knowledge-graph-style material. fiveblocks

Claude

Moderate to high in caution, but not usually citation-heavy by default. fiveblocks

Tends to qualify uncertainty and avoid overstating certainty; citations are not typically the core user-facing feature. fiveblocks

A careful narrative answer that signals confidence limits more than it exposes sources. fiveblocks

Perplexity

High; source use is usually visible and central to the product experience. 

Citations are typically inline and prominent, making it easier to inspect the evidence behind each answer. 

A response built around retrieved sources, with links or references attached to claims. 


Monday, June 29, 2026

There are cover bands, and there are COVER BANDS!


It's a great song, performed wonderfully. Just for fun!



AI ROI Metrics are Coming, Even if They are Essentially "Soft" Measures of Impact

We might as well be honest and predict that enterprises are going to develop all sorts of metrics that purportedly show the positive impact of their artificial intelligence investments, but that the metrics will quite probably be proxies that measure all sorts of things other than direct AI impact.


Still, some common metrics are a starting point:

  • Cost per unit of output — Does AI reduce the labor or compute cost to produce a document, resolve a ticket, process a claim, underwrite a loan?

  • Throughput / cycle time — How many units processed per hour, or how much time shaved off a workflow (e.g., code review, contract drafting, customer onboarding)?

  • Error rates and rework costs — Does AI reduce defect rates, compliance exceptions, or manual correction loops?

  • Headcount avoidance — the ability to scale output without proportional headcount growth. Often measured as "FTE equivalents automated."


Revenue-side metrics are less common, but might include:

  • Conversion lift — Does AI-personalized outreach or recommendation improve sales conversion rates?

  • Revenue per sales rep — If AI handles pipeline qualification or proposal drafting, does rep productivity improve?

  • Customer retention / churn reduction — Does AI-assisted support or proactive intervention improve net revenue retention?

  • Time-to-market — Does AI-accelerated R&D or software development compress product cycles in ways that generate earlier revenue?


Other operational outcomes also sometimes are quantified:

  • Accuracy or precision rates on specific tasks (e.g., document classification, anomaly detection in fraud)

  • Audit findings or compliance exceptions reduced

  • Model risk KPIs — false positive/negative rates in detection systems

  • Employee time recaptured — hours per week freed from low-value tasks, redirected to higher-value work

  • Employee satisfaction / retention — particularly in roles prone to burnout from repetitive work

  • Decision quality — harder to measure, but some firms track downstream outcomes of AI-assisted decisions against historical baselines


As rational as all that sounds, the metrics are “soft.” The attribution problem is severe, as AI is almost never the sole variable changing in a deployment. 


AI might be deployed while other changes also are occurring:

  • Process redesign — Most AI deployments force workflow reengineering. Efficiency gains may be 60% process change and 40% AI

  • Training and change management — The same tool deployed with weak adoption programs vs. strong ones produces dramatically different outcomes

  • Data quality improvements — Organizations often clean and structure data as a precondition to AI deployment; that alone drives gains

  • Personnel changes — New hires, role restructuring, or management changes co-occur with AI rollouts

  • Macroeconomic or market tailwinds — Revenue gains during an AI deployment may reflect market growth, not AI impact.

  • Hawthorne effects — Measuring a team's performance changes behavior regardless of the tool.


The point is that it can be almost impossible to isolate the impact of AI cleanly. So most enterprise AI ROI figures are really "ROI of the initiative that included AI," not AI's marginal contribution.


The more interesting question might be "which specific processes have changed in ways we can measure, and do we understand why?"


Skeptics are correct to argue that attributing success purely to AI is often an oversimplification. But enterprises will have to try and do so, as investors will demand such “proof.”


So firms will supply such “proof” as best they can, even if the outcomes are not, strictly speaking, solely because of AI use. 


And that is not an unusual case. 


Research highlights that AI’s impact is heavily moderated by "complementary assets.” In other words, a firm’s  organizational structure, existing data quality and worker skill levels often do more to determine the outcome than the AI model itself.


Study Focus

Key Finding Regarding Attribution

Source

Productivity Paradox

AI adoption does not guarantee boosts; results are contingent on organizational structure and worker attributes.

Cho et al. (2026)

Social Penalty/Bias

Using AI for assistance causes observers to attribute success to the tool rather than the person, leading to negative competence assessments.

Reif (2025)

Supply Chain/Bias

In complex systems, responsibility is fragmented across vendors/platforms, making it nearly impossible to attribute specific outcomes to one source.

Sharma et al. (2026)

Task-based Impact

AI improves performance within its "capability frontier" but degrades it outside that range; attributing net gains requires granular task-level data.

Brynjolfsson et al. (2023)


The difficulty in quantifying the immediate return on investment for new technologies is a recurring theme in economic history.


During the 1970s and 1980s, despite massive corporate investment in information and communications technology, overall productivity growth in many industrialized nations remained stagnant. This led economists to question whether computers were truly providing the expected value.


Eventually, results were observed, but:

  • Results lagged deployment: it took decades for firms to fully "reimagine" their organizational structures, business models, and workflows to leverage the new technology effective

  • Value was indirect: better management, more efficient coordination or improved service quality, but correlation, not causation, remains a question. 


The measurable financial benefits of a transformative technology often became clear only after business processes were redesigned.


Technology

Scope of Impact

Key Findings

Source

ICT / General IT

U.S. Economy (1995–2000)

ICT accounted for 56% of labor productivity growth; added 1.18 percentage points to GDP growth.

Oliner & Sichel (2000)

Emerging Tech (AI/ML)

U.S. Public Firms (2009–2019)

Over a three-year period, “neither the mean nor the median abnormal ROE (expected performance) reaches statistical significance in the post-implementation period.” “The mean abnormal inventory turnover is −1.06, which is not significantly different from zero.” “Overall, our results…indicate no significant difference in performance between sample and control firms during the implementation period of emerging digital technologies.”

Li et al. (2024)

Internet / ICT

SME Growth (Global)

Web-savvy SMEs grew more than twice as fast as those with minimal web presence.

McKinsey (2011)


Still, in the meantime, we will see all sorts of metrics “demonstrating” AI impact. Enterprises making the investments have no choice but to try to do so, even if those metrics are “soft.”


GEO is Different from SEO

Generative Engine Optimization (GEO) arguably is quite different from search engine optimization (SEO).   Beyond the obvious differences th...